Student engagement and academic performance in pandemic-driven online teaching: An exploratory and machine learning approach

Emilia Mioara Campeanu, I. Boitan, D. Anghel
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Abstract

Abstract Fostering student engagement to acquire knowledge and achieve academic performance requires understanding how students engage in learning and its influence on academic achievement. This provides valuable insights that help improve learning experiences and outcomes. The paper relies on a mixed methods approach by expanding the traditional dimensions of student engagement and by employing a machine learning framework to identify which specific dimension of student engagement exhibits the main impact on student academic achievement. A questionnaire-based survey is conducted for the period 2020-2021 among a cohort of Romanian students. The outcomes of this preliminary exploratory analysis are further embedded into a machine learning framework by performing a LASSO regression. The findings reveal that the most relevant dimensions of student engagement, during remote education, that contribute the most to outcomes were represented by the behavioural, social, cognitive, and emotional engagement dimensions. Furthermore, the switch to online education appeared to have inverted the positive relationship between social and cognitive engagement and academic achievement. Despite the inherent challenges, the student’s interest in class participation and homework completion was stimulated, and they managed to adapt without difficulty to study independently.
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大流行病驱动的在线教学中学生的参与度和学习成绩:探索性和机器学习方法
摘要 要培养学生参与获取知识并取得学业成绩,就必须了解学生如何参与学习及其对学业成绩的影响。这提供了有助于改善学习体验和成果的宝贵见解。本文采用混合方法,扩展了学生参与的传统维度,并采用机器学习框架来确定学生参与的哪个具体维度对学生学业成绩有主要影响。我们在 2020-2021 年期间对一批罗马尼亚学生进行了问卷调查。通过进行 LASSO 回归,将初步探索性分析的结果进一步嵌入机器学习框架。研究结果表明,在远程教育期间,学生参与度的最相关维度是行为、社会、认知和情感参与度,这些维度对结果的贡献最大。此外,转为在线教育似乎颠倒了社会和认知参与与学习成绩之间的正相关关系。尽管存在固有的挑战,但学生参与课堂和完成家庭作业的兴趣得到了激发,他们能够毫无困难地适应独立学习。
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